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ENGG 2040C: Probability Models and Applications Spring 2013 2. Axioms of Probability part one Andrej Bogdanov Probability models A probability model is an assignment of probabilities to every element of the sample space. Probabilities are nonnegative and add up to one. Examples S = { HH, HT, TH, TT } ¼ ¼ ¼ ¼ models a pair of coins with equally likely outcomes Examples a pair of antennas each can be working or defective S = { WW, WD, DW, DD } Model 1: Each antenna defective 10% of the time Defects are “independent” WW WD DW DD .81 .09 .09 .01 Model 2: Dependent defects: e.g both antennas use same power supply WW WD DW DD .9 0 0 .1 How to come up with a model? Option 1: Use common sense If there is no reason to favor one outcome over another, assign same S = { 11, 12, 13, 14, 15, 16, probability to both 21, 22, 23, 24, 25, 26, E.g. and should get same probability 31, 32, 33, 34, 35, 36, 41, 42, 43, 44, 45, 46, 51, 52, 53, 54, 55, 56, 61, 62, 63, 64, 65, 66 } So every outcome w in S must be given probability 1/|S| = 1/36 The unfair die S = { 1, 2, 3, 4, 5, 6 } Common sense model: Probability should be proportional to surface area outcome 1 2 3 4 5 6 surface area (in cm2) 1 2 2 2 1 2 probability .1 .2 .2 .2 .1 .2 How to come up with a model? Option 2 The probability of an outcome should equal the fraction of times that it occurs when the experiment is performed many times under the same conditions. How to come up with a model? S = { 1, 2, 3, 4, 5, 6 } toss 50 times 44446163164351534251412664636216266362223241324453 outcome occurrences 1 7 2 9 3 8 4 11 5 8 6 11 probability .14 .18 .16 .22 .16 .22 How to come up with a model? The more times we repeat the experiment, the more accurate our model will be toss 500 times 1356532511132365226434634623345663453543633514546423623551161445613441262462134541255656616436145465 5564544432666511115423226153655664335622316516625253424311263112466133443122113456244222324152625654 2435142565512653245554554435244153234535112232451656555551431435342225311453366652416621555663645155 1466565423451154611556156623152142224326265654263522234145214313453155221561523135262255633144613411 1115146113656156264255326331563211622355663545116144655216122656515362263456355232115565533521245536 occurrences 1 81 2 79 3 73 4 72 5 110 6 85 probability .162 .158 .147 .144 .220 .170 outcome How to come up with a model? S = { WW, WD, DW, DD } M T WW WD DW DD W T F S x x x x S M T x W T x F S S x x x x x x x x occurrences WW 8 WD 0 DW 1 DD 5 probability 8/14 0 1/14 5/14 outcome Exercise Give a probability model for the gender of Hong Kong young children. sample space = { boy, girl } Model 1: Model 2: common sense 1/2 1/2 .51966 .48034 from Hong Kong annual digest of statistics, 2012 Events An event is a subset of the sample space. Examples S = { HH, HT, TH, TT } both coins come out heads E1 = { HH } first coin comes out heads E2 = { HH, HT } both coins come out same E3 = { HH, TT } Events The complement of an event is the opposite event. E1 = { HH } both coins come out heads both coins do not come out heads E1c = { HT, TH, TT } E Ec S Events The intersection of events happens when all events happen. E2 = { HH, HT } E3 = { HH, TT } (a) first coin comes out heads (b) both coins come out same E2 E3 = { HH } both (a) and (b) happen E F S Events The union of events happens when at least one of the events happens. E2 = { HH, HT } E3 = { HH, TT } (a) first coin comes out heads (b) both coins come out same E2 ∪ E3 = { HH, HT, TT } at least one happens E F S Probability for finite spaces The probability of an event is the sum of the probabilities of its elements Example S = { HH, HT, TH, TT } ¼ ¼ ¼ ¼ both coins come out heads E1 = { HH } first coin comes out heads E2 = { HH, HT } P(E2) = ½ both coins come out same E3 = { HH, TT } P(E3) = ½ P(E1) = ¼ Axioms for finite probability A finite probability space is specified by: A finite sample space S. Every event E over S is given a number P(E) called the probability of E such that 1. for every E, 0 ≤ P(E) ≤ 1 S E 2. P(S) = 1 S 3. If EF = ∅ then P(E∪F) = P(E) + P(F) E F S Rules for calculating probability Complement rule: P(Ec) = 1 – P(E) Ec S E Difference rule: If E ⊆ F P(F and not E) = P(F) – P(E) in particular, P(E) ≤ P(F) E F Inclusion-exclusion: P(E∪F) = P(E) + P(F) – P(EF) E F You can prove them using the axioms. S S Exercise In some town 10% of the people are rich, 5% are famous, and 3% are rich and famous. For a random resident of the town what is the chance that: (a) The person is not rich? (b) The person is rich but not famous? (c) The person is either rich or famous (but not both)? Exercise R 10% 3% 5% F S Solution In some town 10% of the people are rich, 5% are famous, and 3% are rich and famous. For a random resident of the town what is the chance that: (a) The person is not rich? P(Rc) = 1 – P(R) = 90% (b) The person is rich but not famous? P(RFc) = P(R) – P(RF) = 7% (c) The person is either rich or famous (but not both)? P(RFc∪RcF) = P(RFc) + (P(F) – P(RF)) = 9% Equally likely outcomes A probability space has equally likely outcomes if P({x}) = 1/|S| for every x in S Then for every event E |E| number of outcomes in E P(E) = = number of outcomes in S |S| Problem An urn contains 1 red ball and n - 1 blue balls. The balls are shuffled randomly. You draw k balls without replacement. What is the probability that you drew the red ball? Example: n = 5, k = 3 S = {RBBBB, BRBBB, BBRBB, BBBRB, BBBBR} with equally likely outcomes E = {x: the first 3 symbols of x contain an R} = {RBBBB, BRBBB, BBRBB} P(E) = |E|/|S| = 3/5 Solution S= all arrangements of 1 R and n - 1 Bs. we assume equally likely outcomes. E = all arrangements in S where the R occurs in one of the first k positions k |E| = P(E) = n |S| Problem for you to solve An urn contains r red balls and b blue balls, shuffled randomly. You draw k balls without replacement. What is the probability that you drew: (a) No red balls? (b) At least one red ball? (c) At least one ball of each color? (d) The same number of red and blue balls? Solution (a) No red balls? S = all arrangements of r Rs and b Bs. Ea = all such arrangements that have no Rs in the first k positions we assume equally likely outcomes so |Ea| C(r + b – k, r) = P(Ea) = C(r + b, r) |S| Solution (b) At least one red ball? S = all arrangements of r Rs and b Bs. Eb = all such arrangements that have at least one R in the first k positions Eb = Eac so P(Eb) = 1 – P(Ea) C(r + b – k, r) =1– C(r + b, r) Solution (c) At least one ball of each color? S = all arrangements of r Rs and b Bs. Ec = … with at least one R and at least one B in the first k positions Ecc = all Rs or all Bs in the first k positions AB AB is the same P(Ec) = 1 – P(Ecc) AR event as Ea = 1 – P(AR ∪ AB) = 1 – (P(AR) + P(AB)) C(r + b – k, r) C(r + b – k, b) =1– – C(r + b, r) C(r + b, b) Solution (d) The same number of red and blue balls? S = all arrangements of r Rs and b Bs. Ed = … with same number of Rs and b Bs in the first k positions |Ed| = C(k, k/2) C(r + b – k, r – k/2) if k is even 0 if k is odd P(Ed) = |Ed|/|S|. Poker In 5-card poker you are dealt 5 random cards from a deck. What is the probability you get a: